Conway-Maxwell-Poisson (CMP) distributions are flexible generalizations of
the Poisson distribution for modelling overdispersed or underdispersed counts.
The main hindrance to their wider use in practice seems to be the inability to
directly model the mean of counts, making them not compatible with nor
comparable to competing count regression models, such as the log-linear
Poisson, negative-binomial or generalized Poisson regression models. This note
illustrates how CMP distributions can be parametrized via the mean, so that
simpler and more easily-interpretable mean-models can be used, such as a
log-linear model. Other link functions are also available, of course. In
addition to establishing attractive theoretical and asymptotic properties of
the proposed model, its good finite-sample performance is exhibited through
various examples and a simulation study based on real datasets. Moreover, the
MATLAB routine to fit the model to data is demonstrated to be up to an order of
magnitude faster than the current software to fit standard CMP models, and over
two orders of magnitude faster than the recently proposed hyper-Poisson model.Comment: To appear in Statistical Modelling: An International Journa